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Dynamic Matching via Weighted Myopia with Application to Kidney Exchange

机译:通过加权近视的动态匹配,应用于肾交换

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In many dynamic matching applications-especially high-stakes ones-the competitive ratios of prior-free online algorithms are unacceptably poor. The algorithm should take distributional information about possible futures into account in deciding what action to take now. This is typically done by drawing sample trajectories of possible futures at each time period, but may require a prohibitively large number of trajectories or prohibitive memory and/or computation to decide what action to take. Instead, we propose to learn potentials of elements (e.g., vertices) of the current problem. Then, at run time, we simply run an offline matching algorithm at each time period, but subtracting out in the objective the potentials of the elements used up in the matching. We apply the approach to kidney exchange. Kidney exchanges enable willing but incompatible patient-donor pairs (vertices) to swap donors. These swaps typically include cycles longer than two pairs and chains triggered by altruistic donors. Fielded exchanges currently match myopically, maximizing the number of patients who get kidneys in an offline fashion at each time period. Myopic matching is sub-optimal; the clearing problem is dynamic since patients, donors, and altruists appear and expire over time. We theoretically compare the power of using potentials on increasingly large elements: vertices, edges, cycles, and the entire graph (optimum). Then, experiments show that by learning vertex potentials, our algorithm matches more patients than the current practice of clearing myopically. It scales to exchanges orders of magnitude beyond those handled by the prior dynamic algorithm.
机译:在许多动态匹配应用中 - 特别是高赌注 - 现有的在线算法的竞争比率是不可接受的。该算法应考虑有关可能的期货的分配信息,以考虑到现在采取的行动。这通常是通过在每次段期间绘制可能期货的样本轨迹来完成的,但可能需要一个过度大量的轨迹或禁止的内存和/或计算来决定采取的行动。相反,我们建议学习当前问题的元素(例如,顶点)的潜力。然后,在运行时,我们只需在每个时间段运行离线匹配算法,但在匹配中使用元素的电位下减去了所用元素的电位。我们应用了肾交换的方法。肾脏交换使愿意但不相容的患者供体对(顶点)转换供体。这些掉期通常包括长于两对的循环和由利他施主供体触发的两对和链。现场交易所目前匹配Myoply,最大限度地提高在每次何时期间以离线方式获得肾脏的患者数量。近视匹配是次优;由于患者,捐赠者和利他主义者出现并随着时间的推移到期,所清除问题是动态的。我们理论上比较使用越来越大的元素的电位的力量:顶点,边缘,循环和整个图形(最佳)。然后,实验表明,通过学习顶点电位,我们的算法与Myopaly清除的目前的实践相匹配。它缩放以通过先前动态算法处理的数量级。

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